首页|Research on Machine Learning Discussed by Researchers at Tianjin University of Science and Technology (Machine Learning-Based Fuzz Testing Techniques: A Survey)
Research on Machine Learning Discussed by Researchers at Tianjin University of Science and Technology (Machine Learning-Based Fuzz Testing Techniques: A Survey)
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Investigators discuss new findings in artificial intelligence. According to news reporting out of Tianjin, People’s Republic of China, by NewsRx editors, research stated, “Fuzz testing is a vulnerability discovery technique that tests the robustness of target programs by providing them with unconventional data.” The news correspondents obtained a quote from the research from Tianjin University of Science and Technology: “With the rapid increase in software quantity, scale and complexity, traditional fuzzing has revealed issues such as incomplete logic coverage, low automation level and insufficient test cases. Machine learning, with its exceptional capabilities in data analysis and classification prediction, presents a promising approach for improve fuzzing. This paper investigates the latest research results in fuzzing and provides a systematic review of machine learning-based fuzzing techniques. Firstly, by outlining the workflow of fuzzing, it summarizes the optimization of different stages of fuzzing using machine learning. Specifically, it focuses on the application of machine learning in the preprocessing phase, test case generation phase, input selection phase and result analysis phase. Secondly, it mentally focuses on the optimization methods of machine learning in the process of mutation, generation and filtering of test cases and compares and analyzes its technical principles.”
Tianjin University of Science and TechnologyTianjinPeople’s Republic of ChinaAsiaCyborgsEmerging TechnologiesMachine Learning